DEMFFA: a multi-strategy modified Fennec Fox algorithm with mixed improved differential evolutionary variation strategies DOI Creative Commons
Gang Hu,

Keke Song,

Xiuxiu Li

et al.

Journal Of Big Data, Journal Year: 2024, Volume and Issue: 11(1)

Published: May 8, 2024

Abstract The Fennec Fox algorithm (FFA) is a new meta-heuristic that primarily inspired by the fox's ability to dig and escape from wild predators. Compared with other classical algorithms, FFA shows strong competitiveness. “No free lunch” theorem an has different effects in face of problems, such as: when solving high-dimensional or more complex applications, there are challenges as easily falling into local optimal slow convergence speed. To solve this problem FFA, paper, improved Fenna fox DEMFFA proposed adding sin chaotic mapping, formula factor adjustment, Cauchy operator mutation, differential evolution mutation strategies. Firstly, mapping strategy added initialization stage make population distribution uniform, thus speeding up Secondly, order expedite speed algorithm, adjustments made factors whose position updated first stage, resulting faster convergence. Finally, prevent getting too early expand search space population, after second stages original update. In verify performance DEMFFA, qualitative analysis carried out on test sets, tested newly algorithms three sets. And we also CEC2020. addition, applied 10 practical engineering design problems 24-bar truss topology optimization problem, results show potential problems.

Language: Английский

An Advanced Bio-Inspired Mantis Search Algorithm for Characterization of PV Panel and Global Optimization of Its Model Parameters DOI Creative Commons
Ghareeb Moustafa,

Hashim Alnami,

Sultan Hassan Hakmi

et al.

Biomimetics, Journal Year: 2023, Volume and Issue: 8(6), P. 490 - 490

Published: Oct. 18, 2023

Correct modelling and estimation of solar cell characteristics are crucial for effective performance simulations PV panels, necessitating the development creative approaches to improve energy conversion. When handling this complex problem, traditional optimisation algorithms have significant disadvantages, including a predisposition get trapped in certain local optima. This paper develops Mantis Search Algorithm (MSA), which draws inspiration from unique foraging behaviours sexual cannibalism praying mantises. The suggested MSA includes three stages optimisation: prey pursuit, assault, cannibalism. It is created R.TC France Ultra 85-P panel related Shell PowerMax calculating parameters examining six case studies utilising one-diode model (1DM), two-diode three-diode (3DM). Its assessed contrast recently developed optimisers neural network algorithm (NNA), dwarf mongoose (DMO), zebra (ZOA). In light adopted approach, simulation findings electrical power systems. methodology improves 1DM, 2DM, 3DM by 12.4%, 44.05%, 48.88%, 28.96%, 43.19%, 55.81%, 37.71%, 32.71%, 60.13% relative DMO, NNA, ZOA approaches, respectively. For panel, designed technique achieves improvements 62.05%, 67.14%, 84.25%, 49.05%, 53.57%, 74.95%, 37.03%, 37.4%, 59.57% compared techniques,

Language: Английский

Citations

17

Hierarchical RIME algorithm with multiple search preferences for extreme learning machine training DOI Creative Commons
Rui Zhong, Chao Zhang, Jun Yu

et al.

Alexandria Engineering Journal, Journal Year: 2024, Volume and Issue: 110, P. 77 - 98

Published: Oct. 7, 2024

Language: Английский

Citations

8

Parameters identification of photovoltaic models using Lambert W-function and Newton-Raphson method collaborated with AI-based optimization techniques: A comparative study DOI Creative Commons
Mohamed Abdel‐Basset, Reda Mohamed, Ibrahim M. Hezam

et al.

Expert Systems with Applications, Journal Year: 2024, Volume and Issue: 255, P. 124777 - 124777

Published: July 14, 2024

Accurately estimating the unknown parameters of photovoltaic (PV) models based on measured voltage-current data is a challenging optimization problem due to its high nonlinearity and multimodality. An accurate solution this essential for efficiently simulating, controlling, evaluating PV systems. There are three different models, including single-diode model, double-diode triple-diode with five, seven, nine parameters, respectively, proposed represent electrical characteristics systems varying levels complexity accuracy. In literature, several deterministic metaheuristic algorithms have been used accurately solve hard problem. However, problem, methods could not achieve solutions. On other side, algorithms, also known as gradient-free methods, somewhat good solutions but they still need further improvements strengthen their performance against stuck-in local optima slow convergence speed problems. Over last two years, recent better improve avoid tackle continuous majority those has investigated. Therefore, in paper, nineteen recently published such Mantis search algorithm (MSA), spider wasp optimizer (SWO), light spectrum (LSO), growth (GO), walrus (WAOA), hippopotamus (HOA), black-winged kite (BKA), quadratic interpolation (QIO), sinh cosh (SCHA), exponential distribution (EDO), optical microscope (OMA), secretary bird (SBOA), Parrot Optimizer (PO), Newton-Raphson-based (NRBO), crested porcupine (CPO), differentiated creative (DCS), propagation (PSA), one-to-one (OOBO), triangulation topology aggregation (TTAO), studied clarify effectiveness models. addition, collaborate functions, namely Lambert W-Function Newton-Raphson Method, aid solving I-V curve equations more accurately, thereby improving Those assessed using four well-known solar cells modules compared each metrics, best fitness, average worst standard deviation (SD), Friedman mean rank, speed; multiple-comparison test compare difference between ranks. Results comparison show that SWO efficient effective SDM, DDM, TDM over modules, Method equations. study reports perform poorly when applied

Language: Английский

Citations

7

Integrating Differential Evolution into Gazelle Optimization for advanced global optimization and engineering applications DOI Creative Commons
Saptadeep Biswas, Gyan Singh, Biswajit Maiti

et al.

Computer Methods in Applied Mechanics and Engineering, Journal Year: 2024, Volume and Issue: 434, P. 117588 - 117588

Published: Nov. 29, 2024

Language: Английский

Citations

7

DEMFFA: a multi-strategy modified Fennec Fox algorithm with mixed improved differential evolutionary variation strategies DOI Creative Commons
Gang Hu,

Keke Song,

Xiuxiu Li

et al.

Journal Of Big Data, Journal Year: 2024, Volume and Issue: 11(1)

Published: May 8, 2024

Abstract The Fennec Fox algorithm (FFA) is a new meta-heuristic that primarily inspired by the fox's ability to dig and escape from wild predators. Compared with other classical algorithms, FFA shows strong competitiveness. “No free lunch” theorem an has different effects in face of problems, such as: when solving high-dimensional or more complex applications, there are challenges as easily falling into local optimal slow convergence speed. To solve this problem FFA, paper, improved Fenna fox DEMFFA proposed adding sin chaotic mapping, formula factor adjustment, Cauchy operator mutation, differential evolution mutation strategies. Firstly, mapping strategy added initialization stage make population distribution uniform, thus speeding up Secondly, order expedite speed algorithm, adjustments made factors whose position updated first stage, resulting faster convergence. Finally, prevent getting too early expand search space population, after second stages original update. In verify performance DEMFFA, qualitative analysis carried out on test sets, tested newly algorithms three sets. And we also CEC2020. addition, applied 10 practical engineering design problems 24-bar truss topology optimization problem, results show potential problems.

Language: Английский

Citations

6